Deep Reinforcement Learning-Based Motion Planning and PDE Control for Flexible Manipulators
Deep Reinforcement Learning-Based Motion Planning and PDE Control for Flexible Manipulators
This article presents a motion planning and control framework for flexible robotic manipulators, integrating deep reinforcement learning (DRL) with a nonlinear partial differential equation (PDE) controller. Unlike conventional approaches that focus solely on control, we demonstrate that the desired trajectory significantly influences endpoint vibrations. To address this, a DRL motion planner, trained using the soft actor-critic (SAC) algorithm, generates optimized trajectories that inherently minimize vibrations. The PDE nonlinear controller then computes the required torques to track the planned trajectory while ensuring closed-loop stability using Lyapunov analysis. The proposed methodology is validated through both simulations and real-world experiments, demonstrating superior vibration suppression and tracking accuracy compared to traditional methods. The results underscore the potential of combining learning-based motion planning with model-based control for enhancing the precision and stability of flexible robotic manipulators.
Amir Hossein Barjini、Seyed Adel Alizadeh Kolagar、Sadeq Yaqubi、Jouni Mattila
自动化技术、自动化技术设备
Amir Hossein Barjini,Seyed Adel Alizadeh Kolagar,Sadeq Yaqubi,Jouni Mattila.Deep Reinforcement Learning-Based Motion Planning and PDE Control for Flexible Manipulators[EB/OL].(2025-06-10)[2025-06-21].https://arxiv.org/abs/2506.08639.点此复制
评论